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Action database for categorizing and inferring human poses from video sequences

机译:动作数据库,用于根据视频序列对人体姿势进行分类和推断

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One of the difficulties in automated recognition of human activities is classifying a video into a specific action class by selecting among a large number of human actions. Technology for understanding complex and varied human actions is necessary for automated surveillance, sports training, computer games, and human-robot interactions. The difficulty of classification comes from a dearth of datasets of human actions that are manually categorized and suitable for use as training data for designing action classifiers. A marker-based motion capture system enables precise measurement of human actions for the purpose of analysis. This type of capture system has several drawbacks, however; in particular, marker-based systems are expensive, intrusive, and complex to use. Despite this, the intensive use of a motion capture system can provide large datasets of human actions, and the datasets can be used to facilitate handling the variety of actions to be classified. Large datasets of human actions measured by motion capture systems are expected to be suitable for use in classifying video segments into the correct human action category, selecting from among a large number of action categories, and for inferring human postures from video. This paper proposes a new concept for a database of human whole body actions and an application to understanding human actions from video. The database contains action configurations, such as positions of body parts, pose descriptors from silhouette images, a stochastic model encoding each sequence of the pose descriptors, and a regression model for predicting the configuration from the pose descriptor. The action configurations are recorded in advance of use by measuring many human actions with a marker-based motion capture system, and silhouette images are created from these configurations. We tested the action database on action classification tasks and human body posture inference tasks. The experimental results show that the action database is suitable for use in both action classification and posture inference. (C) 2015 Elsevier B.V. All rights reserved.
机译:自动识别人类活动的困难之一是通过从大量人类行动中进行选择来将视频分类为特定的行动类别。对于自动监视,运动训练,计算机游戏和人机交互而言,用于理解复杂多样的人类动作的技术是必需的。分类的困难来自缺乏人工分类的人类动作数据集,这些数据集适合用作设计动作分类器的训练数据。基于标记的运动捕获系统可以精确测量人类行为,以进行分析。但是,这种类型的捕获系统有几个缺点。特别地,基于标记的系统昂贵,侵入性且使用复杂。尽管如此,运动捕捉系统的大量使用可以提供人类动作的大型数据集,并且该数据集可以用于促进处理各种待分类的动作。预期通过运动捕捉系统测量的大型人体动作数据集将适用于将视频片段分类为正确的人体动作类别,从大量动作类别中进行选择以及从视频中推断人体姿势。本文提出了一个新的概念,用于人体整个身体动作的数据库以及在视频中理解人类动作的应用。该数据库包含动作配置,例如身体部位的位置,来自轮廓图像的姿势描述符,对姿势描述符的每个序列进行编码的随机模型以及用于从姿势描述符预测配置的回归模型。通过使用基于标记的运动捕获系统测量许多人的动作,可以在使用前记录这些动作的配置,并从这些配置中创建轮廓图像。我们在动作分类任务和人体姿势推断任务上测试了动作数据库。实验结果表明,该动作数据库适合用于动作分类和姿势推断。 (C)2015 Elsevier B.V.保留所有权利。

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